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Efficient Prediction of Low-Visibility Events at Airports Using Machine-Learning Regression

Authors :
Laura Cornejo-Bueno
J. Sanz-Justo
C. Casanova-Mateo
Elena Cerro-Prada
Sancho Salcedo-Sanz
Source :
Boundary-Layer Meteorology. 165:349-370
Publication Year :
2017
Publisher :
Springer Science and Business Media LLC, 2017.

Abstract

We address the prediction of low-visibility events at airports using machine-learning regression. The proposed model successfully forecasts low-visibility events in terms of the runway visual range at the airport, with the use of support-vector regression, neural networks (multi-layer perceptrons and extreme-learning machines) and Gaussian-process algorithms. We assess the performance of these algorithms based on real data collected at the Valladolid airport, Spain. We also propose a study of the atmospheric variables measured at a nearby tower related to low-visibility atmospheric conditions, since they are considered as the inputs of the different regressors. A pre-processing procedure of these input variables with wavelet transforms is also described. The results show that the proposed machine-learning algorithms are able to predict low-visibility events well. The Gaussian process is the best algorithm among those analyzed, obtaining over 98% of the correct classification rate in low-visibility events when the runway visual range is $${>}$$ 1000 m, and about 80% under this threshold. The performance of all the machine-learning algorithms tested is clearly affected in extreme low-visibility conditions ( $${

Details

ISSN :
15731472 and 00068314
Volume :
165
Database :
OpenAIRE
Journal :
Boundary-Layer Meteorology
Accession number :
edsair.doi...........167c530f88806fd508768b158dbc00e1
Full Text :
https://doi.org/10.1007/s10546-017-0276-8